A meta-model trained by statistical shape modeling and CFD approximated patient-specific aortic valve pressure-drops with an average error of 8.8% to 10.6% for orifice areas below 150 mm2.
A meta-model trained on statistical shape modeling and CFD simulations can provide real-time, reasonably accurate estimates of the pressure-drop across the aortic valve for areas <150 mm².
Abstract Background Advances in medical imaging, segmentation techniques, and high performance computing have stimulated the use of complex, patient‐specific, three‐dimensional Computational Fluid Dynamics (CFD) simulations. Patient‐specific, CFD‐compatible geometries of the aortic valve are readily obtained. CFD can then be used to obtain the patient‐specific pressure‐flow relationship of the aortic valve. However, such CFD simulations are computationally expensive, and real‐time alternatives are desired. Aim The aim of this work is to evaluate the performance of a meta‐model with respect to high‐fidelity, three‐dimensional CFD simulations of the aortic valve. Methods Principal component analysis was used to build a statistical shape model (SSM) from a population of 74 iso‐topological meshes of the aortic valve. Synthetic meshes were created with the SSM, and steady‐state CFD simulations at flow‐rates between 50 and 650 mL/s were performed to build a meta‐model. The meta‐model related the statistical shape variance, and flow‐rate to the pressure‐drop. Results Even though the first three shape modes account for only 46% of shape variance, the features relevant for the pressure‐drop seem to be captured. The three‐mode shape‐model approximates the pressure‐drop with an average error of 8.8% to 10.6% for aortic valves with a geometric orifice area below 150 mm 2 . The proposed methodology was least accurate for aortic valve areas above 150 mm 2 . Further reduction to a meta‐model introduces an additional 3% error. Conclusions Statistical shape modeling can be used to capture shape variation of the aortic valve. Meta‐models trained by SSM‐based CFD simulations can provide an estimate of the pressure‐flow relationship in real‐time.
Hoeijmakers et al. (Mon,) conducted a other in Aortic valve pressure-drop (n=74). Meta-model based on statistical shape modeling and CFD vs. High-fidelity three-dimensional CFD simulations was evaluated on Pressure-drop approximation error. A meta-model trained by statistical shape modeling and CFD approximated patient-specific aortic valve pressure-drops with an average error of 8.8% to 10.6% for orifice areas below 150 mm2.